首页> 外文会议>Mediterranean conference on medical and biological engineering and computing >First Trimester Diagnosis of Trisomy-21 Using Artificial Neural Networks
【24h】

First Trimester Diagnosis of Trisomy-21 Using Artificial Neural Networks

机译:使用人工神经网络的第一个妊娠期Trisomy-21诊断

获取原文

摘要

Langdon Down in 1866 reported on a syndrome in which individuals have skin appearing to be too large for the body, a nose small and a flat face. This is a chromosomal disorder caused by the presence of all or part of an extra 21st chromosome, and is known as the Down syndrome, or trisomy 21, or trisomy G. In the last fifteen years it has become possible to observe these features by ultrasound examination in the third month of intrauterine life. About 75% of trisomy 21 fetuses have absent nasal bone. In the present work, neural network schemes that have been applied to a large data base of findings from ultrasounds of fetuses, aiming at generating a predictor for the risk of Down syndrome are reported. A good number of feed forward neural structures, both standard multilayer and multi-slab, were tried for the prediction. The database was composed of 23513 cases of fetuses in UK, provided by the Fetal Medicine Foundation in London. For each subject, 19 parameters were measured or recorded. Out of these, 19 parameters were considered as the most influential at characterizing the risk for this type of chromosomal defect. The best results obtained were with a multi-slab neural structure. In the training set there was a correct classification of the 98.9% cases of trisomy 21 and in the test set 100%. The prediction for the totally unknown verification test set was 93.3%.
机译:Langdon于1866年报告了一个综合征,其中个体对身体的皮肤过大,鼻子小而扁平的脸。这是由全部或部分额外的21染色体存在引起的染色体疾病,并且被称为唐氏综合征,或三兆癣21或三兆癣G.在过去的十五年里,可以通过超声观察这些特征在宫内生中的第三个月考试。大约75%的三胞癣21胎儿没有鼻骨。在本作工作中,报道了从胎儿超声波应用于大数据的神经网络方案,旨在产生用于抑制综合征风险的预测。为预测尝试了良好的饲料前向神经结构,标准多层和多板。该数据库由英国的23513例胎儿组成,由胎儿医学基金会提供伦敦。对于每个受试者,测量或记录19个参数。其中,19个参数被认为是表征这种类型染色体缺陷的风险的最有影响力。获得的最佳结果具有多板状神经结构。在培训集中,有98.9%的三术21例和试验设定的正确分类100%。完全未知验证试验组的预测为93.3%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号